AffineLinearOperator
Inherits From: Bijector
Defined in tensorflow/contrib/distributions/python/ops/bijectors/affine_linear_operator.py.
See the guide: Random variable transformations (contrib) > Bijectors
Compute Y = g(X; shift, scale) = scale @ X + shift.
shift is a numeric Tensor and scale is a LinearOperator.
If X is a scalar then the forward transformation is: scale * X + shift where * denotes the scalar product.
Note: we don't always simply transposeX(but write it this way for brevity). Actually the inputXundergoes the following transformation before being premultiplied byscale:
X = tf.expand_dims(X, 0), i.e., new_sample_shape = [1]. Otherwise do nothing.new_sample_shape = [n] where n = tf.reduce_prod(old_sample_shape).new_shape = [B1,...,Bb, k, n] where n is as above, k is the event_shape, and B1,...,Bb are the batch shapes for each of b batch dimensions.(For more details see shape.make_batch_of_event_sample_matrices.)
The result of the above transformation is that X can be regarded as a batch of matrices where each column is a draw from the distribution. After premultiplying by scale, we take the inverse of this procedure. The input Y also undergoes the same transformation before/after premultiplying by inv(scale).
Example Use:
linalg = tf.linalg
x = [1., 2, 3]
shift = [-1., 0., 1]
diag = [1., 2, 3]
scale = linalg.LinearOperatorDiag(diag)
affine = AffineLinearOperator(shift, scale)
# In this case, `forward` is equivalent to:
# y = scale @ x + shift
y = affine.forward(x) # [0., 4, 10]
shift = [2., 3, 1]
tril = [[1., 0, 0],
[2, 1, 0],
[3, 2, 1]]
scale = linalg.LinearOperatorLowerTriangular(tril)
affine = AffineLinearOperator(shift, scale)
# In this case, `forward` is equivalent to:
# np.squeeze(np.matmul(tril, np.expand_dims(x, -1)), -1) + shift
y = affine.forward(x) # [3., 7, 11]
dtypedtype of Tensors transformable by this distribution.
event_ndimsReturns then number of event dimensions this bijector operates on.
graph_parentsReturns this Bijector's graph_parents as a Python list.
is_constant_jacobianReturns true iff the Jacobian is not a function of x.
Note: Jacobian is either constant for both forward and inverse or neither.
is_constant_jacobian: Python bool.nameReturns the string name of this Bijector.
scaleThe scale LinearOperator in Y = scale @ X + shift.
shiftThe shift Tensor in Y = scale @ X + shift.
validate_argsReturns True if Tensor arguments will be validated.
__init____init__(
shift=None,
scale=None,
event_ndims=1,
validate_args=False,
name='affine_linear_operator'
)
Instantiates the AffineLinearOperator bijector.
shift: Floating-point Tensor.scale: Subclass of LinearOperator. Represents the (batch) positive definite matrix M in R^{k x k}.event_ndims: Scalar integer Tensor indicating the number of dimensions associated with a particular draw from the distribution. Must be 0 or 1.validate_args: Python bool indicating whether arguments should be checked for correctness.name: Python str name given to ops managed by this object.ValueError: if event_ndims is not 0 or 1.TypeError: if scale is not a LinearOperator.TypeError: if shift.dtype does not match scale.dtype.ValueError: if not scale.is_non_singular.forwardforward(
x,
name='forward'
)
Returns the forward Bijector evaluation, i.e., X = g(Y).
x: Tensor. The input to the "forward" evaluation.name: The name to give this op.Tensor.
TypeError: if self.dtype is specified and x.dtype is not self.dtype.NotImplementedError: if _forward is not implemented.forward_event_shapeforward_event_shape(input_shape)
Shape of a single sample from a single batch as a TensorShape.
Same meaning as forward_event_shape_tensor. May be only partially defined.
input_shape: TensorShape indicating event-portion shape passed into forward function.forward_event_shape_tensor: TensorShape indicating event-portion shape after applying forward. Possibly unknown.forward_event_shape_tensorforward_event_shape_tensor(
input_shape,
name='forward_event_shape_tensor'
)
Shape of a single sample from a single batch as an int32 1D Tensor.
input_shape: Tensor, int32 vector indicating event-portion shape passed into forward function.name: name to give to the opforward_event_shape_tensor: Tensor, int32 vector indicating event-portion shape after applying forward.forward_log_det_jacobianforward_log_det_jacobian(
x,
name='forward_log_det_jacobian'
)
Returns both the forward_log_det_jacobian.
x: Tensor. The input to the "forward" Jacobian evaluation.name: The name to give this op.Tensor, if this bijector is injective. If not injective this is not implemented.
TypeError: if self.dtype is specified and y.dtype is not self.dtype.NotImplementedError: if neither _forward_log_det_jacobian nor {_inverse, _inverse_log_det_jacobian} are implemented, or this is a non-injective bijector.inverseinverse(
y,
name='inverse'
)
Returns the inverse Bijector evaluation, i.e., X = g^{-1}(Y).
y: Tensor. The input to the "inverse" evaluation.name: The name to give this op.Tensor, if this bijector is injective. If not injective, returns the k-tuple containing the unique k points (x1, ..., xk) such that g(xi) = y.
TypeError: if self.dtype is specified and y.dtype is not self.dtype.NotImplementedError: if _inverse is not implemented.inverse_event_shapeinverse_event_shape(output_shape)
Shape of a single sample from a single batch as a TensorShape.
Same meaning as inverse_event_shape_tensor. May be only partially defined.
output_shape: TensorShape indicating event-portion shape passed into inverse function.inverse_event_shape_tensor: TensorShape indicating event-portion shape after applying inverse. Possibly unknown.inverse_event_shape_tensorinverse_event_shape_tensor(
output_shape,
name='inverse_event_shape_tensor'
)
Shape of a single sample from a single batch as an int32 1D Tensor.
output_shape: Tensor, int32 vector indicating event-portion shape passed into inverse function.name: name to give to the opinverse_event_shape_tensor: Tensor, int32 vector indicating event-portion shape after applying inverse.inverse_log_det_jacobianinverse_log_det_jacobian(
y,
name='inverse_log_det_jacobian'
)
Returns the (log o det o Jacobian o inverse)(y).
Mathematically, returns: log(det(dX/dY))(Y). (Recall that: X=g^{-1}(Y).)
Note that forward_log_det_jacobian is the negative of this function, evaluated at g^{-1}(y).
y: Tensor. The input to the "inverse" Jacobian evaluation.name: The name to give this op.Tensor, if this bijector is injective. If not injective, returns the tuple of local log det Jacobians, log(det(Dg_i^{-1}(y))), where g_i is the restriction of g to the ith partition Di.
TypeError: if self.dtype is specified and y.dtype is not self.dtype.NotImplementedError: if _inverse_log_det_jacobian is not implemented.
© 2018 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/api_docs/python/tf/contrib/distributions/bijectors/AffineLinearOperator